Transfer Learning and Mixup for Fine-Grained Few-Shot Fungi Classification

Jul 11, 2025ยท
Jason Kahei Tam
Murilo Gustineli
Murilo Gustineli
,
Anthony Miyaguchi
ยท 0 min read
FungiCLEF 2025
Abstract

Accurate identification of fungi species presents a unique challenge in computer vision due to fine-grained inter-species variation and high intra-species variation. This paper presents our approach for the FungiCLEF 2025 competition, which focuses on few-shot fine-grained visual categorization (FGVC) using the FungiTastic Few-Shot dataset. Our team (DS@GT) experimented with multiple vision transformer models, data augmentation, weighted sampling, and incorporating textual information. We also explored generative AI models for zero-shot classification using structured prompting but found them to significantly underperform relative to vision-based models. Our final model outperformed both competition baselines and highlighted the effectiveness of domain-specific pretraining and balanced sampling strategies. Our approach ranked 35/74 on the private test set in post-completion evaluation, this suggests additional work can be done on metadata selection and domain-adapted multi-modal learning. Our code is available at github.com/dsgt-arc/fungiclef-2025.

Type
Publication
CEUR Workshop Proceedings (CEUR-WS.org)